Knowledge Agora



Similar Articles

Title Arithmetic Optimization with Deep Learning Enabled Anomaly Detection in Smart City
ID_Doc 35921
Authors Ragab, M; Sabir, MFS
Title Arithmetic Optimization with Deep Learning Enabled Anomaly Detection in Smart City
Year 2022
Published Cmc-Computers Materials & Continua, 73, 1
Abstract In recent years, Smart City Infrastructures (SCI) have become familiar whereas intelligent models have been designed to improve the quality of living in smart cities. Simultaneously, anomaly detection in SCI has become a hot research topic and is widely explored to enhance the safety of pedestrians. The increasing popularity of video surveillance system and drastic increase in the amount of collected videos make the conventional physical investigation method to identify abnormal actions, a laborious process. In this background, Deep Learning (DL) models can be used in the detection of anomalies found through video surveillance systems. The current research paper develops an Internet of Things Assisted Deep Learning Enabled Anomaly Detection Technique for Smart City Infrastructures, named (IoTAD-SCI) technique. The aim of the proposed IoTAD-SCI technique is to mainly identify the existence of anomalies in smart city environment. Besides, IoTAD-SCI technique involves Deep Consensus Network (DCN) model design to detect the anomalies in input video frames. In addition, Arithmetic Optimization Algorithm (AOA) is executed to tune the hyperparameters of the DCN model. Moreover, ID3 classifier is also utilized to classify the identified objects in different classes. The experimental analysis was conducted for the proposed IoTADSCI technique upon benchmark UCSD anomaly detection dataset and the results were inspected under different measures. The simulation results infer the superiority of the proposed IoTAD-SCI technique under different metrics.
PDF https://www.techscience.com/cmc/v73n1/47810/pdf

Similar Articles

ID Score Article
36161 Islam, M; Dukyil, AS; Alyahya, S; Habib, S An IoT Enable Anomaly Detection System for Smart City Surveillance(2023)Sensors, 23, 4
41393 Zhao, YX; Man, KL; Smith, J; Guan, SU A novel two-stream structure for video anomaly detection in smart city management(2022)Journal Of Supercomputing, 78, 3
38055 Huu, NNT; Mai, L; Minh, TV Detecting Abnormal and Dangerous Activities Using Artificial Intelligence on The Edge for Smart City Application(2021)
43817 Devi, EMR; Almakayeel, N; Lydia, EL Improved sand cat swarm optimization with deep learning based enhanced malicious activity recognition for cybersecurity(2024)
41897 Kaytaz, U; Sivrikaya, F; Albayrak, S Competitive Learning for Unsupervised Anomaly Detection in Intelligent Transportation Systems(2022)
38272 Saba, T; Khan, AR; Sadad, T; Hong, SP Securing the IoT System of Smart City against Cyber Threats Using Deep Learning(2022)
39207 He, JJ; Dong, M; Bi, S; Zhao, WJ; Liao, XT A Deep Neural Network for Anomaly Detection and Forecasting for Multivariate Time Series in Smart City(2019)
40319 Xu, RB; Cheng, YL; Liu, ZQ; Xie, Y; Yang, Y Improved Long Short-Term Memory based anomaly detection with concept drift adaptive method for supporting IoT services(2020)
41832 Gupta, SK; Tripathi, M; Grover, J Hybrid optimization and deep learning based intrusion detection system(2022)
42294 Xia, B; Zhou, J; Kong, FY; Yang, JR; Lin, L; Wu, X; Xie, Q Edge Perception Temporal Data Anomaly Detection Method Based on BiLSTM-Attention in Smart City Big Data Environment(2024)Journal Of Circuits Systems And Computers, 33, 12
Scroll